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AIが認知科学の理論構築を自動化し、新たな発見を導く

原題: Closing the Loop to Discover Psychological Theories with an Automated Cognitive Scientist
著者: Akshay K. Jagadish, Younes Strittmatter, Nori Jacoby, George Kachergis, Eric Schulz, Nathaniel Daw, Suyog H. Chandramouli, Thomas L. Griffiths
公開日: 2026-06-24 | 分野: AI cs.AI q-bio.NC AIエージェント AI支援 AI評価

※ 日本語タイトル・ポイントはAIによる自動生成です。正確な内容は原論文をご確認ください。

ポイント

  • AIエージェントが理論を提唱し、実験を設計・実行して行動データを収集・分析する自動化システムを開発した。
  • このシステムは、既存モデルの失敗から学習し、データに基づいた理論生成を自動化することで、認知科学の理論構築のボトルネックを解消する。
  • シミュレーションと人間実験の両方で既知の戦略を再現し、既存理論を上回る新規理論を発見・検証することに成功した。

Abstract

Across the sciences, autonomous systems are increasingly being used in closed-loop discovery, proposing new theories and designing and running experiments to test them. This approach is yet to be applied in the field of cognitive science, where the central bottleneck is theory-building: the creative step of turning the accumulated failures of existing models into better ones. Theory generation has remained manual even as data collection, modeling, and experiment design have been automated. We present the Automated Cognitive Scientist (AutoCog), a fully autonomous agentic-AI system that closes this loop. Large-language-model agents advocate competing theories, each expressed as an executable cognitive model, design experiments that best discriminate them, collect behavioral data from participants recruited online, score theories against collected data based on their generative performance, diagnose why they fail, and synthesize a better successor. Repeating this cycle allows them to search the space of theories, models, and experiments. In the domain of decision-making, AutoCog recovered known decision-making strategies from simulated behavior, including unconventional ones, showing that its discoveries are ultimately driven by the data rather than strictly bound by the priors of the underlying language models. When run with human participants, it produced theories that outperformed the established theories it was seeded with and generalized to held-out studies in two different experimental settings. It also surfaced a novel theory of multi-cue decision-making in which choices show diminishing sensitivity to feature values. The distinctive predictions of this theory were confirmed in a preregistered study with new participants. AutoCog demonstrates how an automated discovery system can be used to turn cognitive theory-building into an explicit, executable, and cumulative science.

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